AWS Big Data Blog

Improve RabbitMQ performance on Amazon MQ with AWS Graviton3-based M7g instances

Amazon MQ is a fully managed service for open-source message brokers such as RabbitMQ and Apache ActiveMQ. Today, we are announcing the availability of AWS Graviton3-based Rabbit MQ brokers on Amazon MQ, which runs on Amazon EC2 M7g instances. AWS Graviton processors are custom designed server processors developed by AWS to provide the best price performance for cloud workloads running on Amazon EC2.

Accelerating development with the AWS Data Processing MCP Server and Agent

We’re excited to introduce the AWS Data Processing MCP Server, an open-source tool that uses the Model Context Protocol (MCP) to simplify analytics environment setup on AWS. In this post, we explore how the AWS Data Processing MCP Server accelerates analytics solution development and how data engineers can transform raw data into business-ready insights through AI-assisted workflows, significantly reducing development time and complexity.

Workload management in OpenSearch-based multi-tenant centralized logging platforms

When you use Amazon OpenSearch Service to store and analyze log data, whether as a developer or an IT admin, you must balance these tenants to make sure you deliver the resources to each tenant so they can ingest, store, and query their data. In this post, we present a multi-layered workload management framework with a rules-based proxy and OpenSearch workload management that can effectively address these challenges.

Optimizing vector search using Amazon S3 Vectors and Amazon OpenSearch Service

We now have a public preview of two integrations between Amazon Simple Storage Service (Amazon S3) Vectors and Amazon OpenSearch Service that give you more flexibility in how you store and search vector embeddings. In this post, we walk through this seamless integration, providing you with flexible options for vector search implementation.

Unifying data insights with Amazon QuickSight and Amazon SageMaker

Amazon SageMaker has announced an integration with Amazon QuickSight, bringing together data in SageMaker seamlessly with QuickSight capabilities like interactive dashboards, pixel perfect reports and generative business intelligence (BI)—all in a governed and automated manner. In this post, we walk through the complete process of integrating Amazon QuickSight with Amazon SageMaker Unified Studio, demonstrating how teams can move from raw data to published dashboards in a secure and governed environment.

Integrating Amazon OpenSearch Ingestion with Amazon RDS and Amazon Aurora

We are happy to announce the general availability of the integration of Amazon OpenSearch Service with Amazon Relational Database Service (Amazon RDS) and Amazon Aurora. This new integration eliminates complex data pipelines and enables near real-time data synchronization between Amazon Aurora (including Amazon Aurora MySQL-Compatible Edition and Amazon Aurora PostgreSQL-Compatible Edition) and Amazon RDS databases (including Amazon RDS for MySQL and Amazon RDS for PostgreSQL), and Amazon OpenSearch Service, unlocking advanced search capabilities such as hybrid search, ranked results, and faceted search on transactional databases.

Unifying metadata governance across Amazon SageMaker and Collibra

Amazon Web Services (AWS) and Collibra have built a new integrated solution that demonstrates the integration between the Collibra Platform and the next generation of Amazon SageMaker. In this post, we take a closer look at the integration, describe the use cases it enables, walk through the architecture, and show how to implement the solution in your environment.

Compaction support for Avro and ORC file formats in Apache Iceberg tables in Amazon S3

In this post, we explore how Amazon S3 Tables has expanded its automatic compaction capabilities to include Avro and ORC file formats for Apache Iceberg tables, alongside the previously supported Parquet format. Through performance testing with over 20 billion events, the capability demonstrates significant query performance improvements ranging from 12% to 40% when using compacted tables compared to non-compacted tables across different file formats.